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Transcript
CHAPTER 14:
Confidence Intervals:
The Basics
The Basic Practice of Statistics
6th Edition
Moore / Notz / Fligner
Lecture PowerPoint Slides
Chapter 14 Concepts
2

The Reasoning of Statistical Estimation

Margin of Error and Confidence Level

Confidence Intervals for a Population Mean

How Confidence Intervals Behave
Chapter 14 Objectives
3






Define statistical inference
Describe the reasoning of statistical estimation
Describe the parts of a confidence interval
Interpret a confidence level
Construct and interpret a confidence interval for
the mean of a Normal population
Describe how confidence intervals behave
Statistical Inference
4
After we have selected a sample, we know the responses of the individuals in the
sample. However, the reason for taking the sample is to infer from that data
some conclusion about the wider population represented by the sample.
Statistical Inference
Statistical inference provides methods for drawing conclusions about a
population from sample data.
Population
Sample
Collect data from a
representative Sample...
Make an Inference
about the Population.
Simple Conditions for Inference
About a Mean
5
This chapter presents the basic reasoning of statistical inference. We
start with a setting that is too simple to be realistic.
Simple Conditions for Inference About a Mean
1.We have an SRS from the population of interest. There is no nonresponse
or other practical difficulty.
2.The variable we measure has an exactly Normal distribution N(μ,σ) in the
population.
3.We don’t know the population mean μ, but we do know the population
standard deviation σ.
Note: The conditions that we have a perfect SRS, that the population
is exactly Normal, and that we know the population standard
deviation are all unrealistic.
The Reasoning of Statistical
Estimation
6
Your teacher has selected a “Mystery Mean” value µ and stored it as
“M” in their calculator. The following command was executed on their
calculator: mean(randNorm(M,20,16))
The result was 240.79. This tells us
the calculator chose an SRS of 16
observations from a Normal population
with mean M and standard deviation
20. The resulting sample mean of
those 16 values was 240.79.
Suppose we want to determine an interval of reasonable values
for the population mean µ. We can use the result above and
what we learned about sampling distributions in the previous
chapters.
The Reasoning of Statistical
Estimation
7
Since the sample mean is 240.79, we could guess
that µ is “somewhere” around 240.79. How close
to 240.79 is µ likely to be?
To answer this question, we must ask another:
How would the sample mean x vary if we took many SRSs
of size 16 from the population?
Shape : Since the population is Normal, so is the sampling distribution of x .
Center : The mean of the sampling distribution of x is the same as the mean
of the population distribution, m.
Spread : The standard deviation of x for an SRS of 16 observations is
s
20
sx =
=
=5
n
16
8
The Reasoning of Statistical
Estimation
 In repeated samples, the values of the
sample mean will follow a Normal
distribution with mean µ and standard
deviation 5.
 The 68-95-99.7 Rule tells us that in 95%
of all samples of size 16, the sample
mean will be within 10 (two standard
deviations) of µ.
 If the sample mean is within 10 points of
µ, then µ is within 10 points of the sample
mean.
 Therefore, the interval from 10 points below to 10 points above the
sample mean will “capture” µ in about 95% of all samples of size 16.
If we estimate that µ lies somewhere in the interval 230.79 to 250.79,
we’d be calculating an interval using a method that captures the true µ
in about 95% of all possible samples of this size.
Confidence Interval
9
The Big Idea: The sampling distribution of x tells us how close to µ the
sample mean x is likely to be. All confidence intervals we construct will have
a form similar to this:
estimate ± margin of error
Confidence Interval
A level C confidence interval for a parameter has two parts:
• An interval calculated from the data, which has the form:
estimate ± margin of error
•A confidence level C, which gives the probability that the interval will
capture the true parameter value in repeated samples. That is, the
confidence level is the success rate for the method.
We usually choose a confidence level of 90% or higher because we want to be
quite sure of our conclusions. The most common confidence level is 95%.
Confidence Level
10
The confidence level is the overall capture rate if the method is used many times. The
sample mean will vary from sample to sample, but when we use the method estimate ±
margin of error to get an interval based on each sample, C% of these intervals capture the
unknown population mean µ.
Interpreting a Confidence Level
To say that we are 95% confident is shorthand for
“95% of all possible samples of a given size from this
population will result in an interval that captures the
unknown parameter.”
Confidence Intervals for a Population
Mean
11
Previously, we estimated the “mystery mean” µ by constructing a confidence
interval using the sample mean = 240.79.
To calculate a 95% confidence interval for µ , we use the familiar formula:
estimate ± (critical value) • (standard deviation of statistic)
s
20
x ± z *×
= 240.79 ± 1.96×
n
16
= 240.79 ± 9.8
= (230.99,250.59)
Confidence Interval for the Mean of a Normal Population
Choose an SRS of size n from a population having unknown mean µ and known standard
deviation σ. A level C confidence interval for µ is:
x  z*

n
The critical value z* is found from the standard Normal distribution.
Confidence Intervals: The Four-Step
Process
12
Confidence Intervals: The Four-Step Process
State: What is the practical question that requires estimating a parameter?
Plan: Identify the parameter, choose a level of confidence, and select the
type of confidence interval that fits your situation.
Solve: Carry out the work in two phases:
1. Check the conditions for the interval that you plan to use.
2. Calculate the confidence interval.
Conclude: Return to the practical question to describe your results in this
setting.
How Confidence Intervals Behave
13
The z confidence interval for the mean of a Normal population illustrates several
important properties that are shared by all confidence intervals in common use.
• The user chooses the confidence level and the margin of error follows.
• We would like high confidence and a small margin of error.
•
•
High confidence suggests our method almost always gives correct answers.
A small margin of error suggests we have pinned down the parameter precisely.
How do we get a small margin of error?
The margin of error for the z confidence interval is:
z *×
s
n
The margin of error gets smaller when:
• z* gets smaller (the same as a lower confidence level C)
• σ is smaller. It is easier to pin down µ when σ is smaller.
• n gets larger. Since n is under the square root sign, we must take four
times as many observations to cut the margin of error in half.
Chapter 14 Objectives Review
14






Define statistical inference
Describe the reasoning of statistical estimation
Describe the parts of a confidence interval
Interpret a confidence level
Construct and interpret a confidence interval
for the mean of a Normal population
Describe how confidence intervals behave